Machine Learning for Deferral of Care Prediction
- URL: http://arxiv.org/abs/2207.01485v1
- Date: Thu, 9 Jun 2022 01:21:13 GMT
- Title: Machine Learning for Deferral of Care Prediction
- Authors: Muhammad Aurangzeb Ahmad, Raafia Ahmed, Dr. Steve Overman, Patrick
Campbell, Corinne Stroum, Bipin Karunakaran
- Abstract summary: Continual care deferral in populations may lead to a decline in population health and compound health issues leading to higher social and financial costs in the long term.
Minority and vulnerable populations are at a greater risk of care deferral due to socioeconomic factors.
Many health systems currently use rules-based techniques to retroactively identify patients who previously deferred care.
The objective of this model is to identify patients at risk of deferring care and allow the health system to prevent care deferrals through direct outreach or social mediation.
- Score: 4.436632973105494
- License: http://creativecommons.org/licenses/by-sa/4.0/
- Abstract: Care deferral is the phenomenon where patients defer or are unable to receive
healthcare services, such as seeing doctors, medications or planned surgery.
Care deferral can be the result of patient decisions, service availability,
service limitations, or restrictions due to cost. Continual care deferral in
populations may lead to a decline in population health and compound health
issues leading to higher social and financial costs in the long term.
Consequently, identification of patients who may be at risk of deferring care
is important towards improving population health and reducing care total costs.
Additionally, minority and vulnerable populations are at a greater risk of care
deferral due to socioeconomic factors. In this paper, we (a) address the
problem of predicting care deferral for well-care visits; (b) observe that
social determinants of health are relevant explanatory factors towards
predicting care deferral, and (c) compute how fair the models are with respect
to demographics, socioeconomic factors and selected comorbidities. Many health
systems currently use rules-based techniques to retroactively identify patients
who previously deferred care. The objective of this model is to identify
patients at risk of deferring care and allow the health system to prevent care
deferrals through direct outreach or social determinant mediation.
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